Journal of Jilin University (Information Science Edition) ›› 2023, Vol. 41 ›› Issue (5): 858-865.

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Design of Multi-Dimensional and Hierarchical Integrated Experimental Platform Based on Python

LIANG Nan 1a , WANG Chengxi 1a , ZHANG Chunfei 1a , XU Tao 2 , JI Fenglei 1b   

  1. 1a. Public Computer Teaching and Research Center; 1b. College of Communication Engineering, Jilin University, Changchun 130012, China; 2. Purchasing Department, First Automobile Works Volkswagen Automotive Company Limited, Changchun 130013, China
  • Received:2023-04-05 Online:2023-10-09 Published:2023-10-10

Abstract:

To meet the need of integrating scientific research into teaching of Emerging Engineering Education, a multi-dimensional and hierarchical integrated experimental platform based on Python is designed. Guided by the talent-training plan, hierarchical modules involving image recognition, machine learning and data analysis is designed from scientific research hotspots. Image recognition module starts from character recognition, then face and license plate recognition are realized by several algorithms. In the machine learning module, commonly used machine learning algorithms are studied and corn disease is identified by various methods based on Python. In the data processing and analysis module, Excel data processing experiment based on Python is designed to analyze the data of workload and bioinformatics data. The platform enables students to learn the application of Python in the experiments, and choose different experimental projects according to professional needs and research directions to realize the goal of teaching students in accordance with their aptitude. By applying the experimental platform to teaching practice, it is demonstrated that students have a deeper understanding of Python’s programming implementation in image recognition, machine learning, and data analysis and enhanced research interest. And the goal of integrating scientific research into teaching and improving the quality of undergraduate teaching could be achieved.

Key words: Integrated experimental platform, python language, image recognition, machine learning, data analysis

CLC Number: 

  • TP391